CATA++: A Collaborative Dual Attentive Autoencoder Method for Recommending Scientific Articles

02/27/2020
by   Meshal Alfarhood, et al.
4

Recommender systems today have become an essential component of any commercial website. Collaborative filtering approaches, and Matrix Factorization (MF) techniques in particular, are widely used in recommender systems. However, the natural data sparsity problem limits their performance where users generally interact with very few items in the system. Consequently, multiple hybrid models were proposed recently to optimize MF performance by incorporating additional contextual information in its learning process. Although these models improve the recommendation quality, there are two primary aspects for further improvements: (1) multiple models focus only on some portion of the available contextual information and neglect other portions; (2) learning the feature space of the side contextual information needs to be further enhanced. In this paper, we propose a Collaborative Dual Attentive Autoencoder (CATA++) for recommending scientific articles. CATA++ utilizes an article's content and learns its latent space via two parallel autoencoders. We use attention mechanism to capture the most pertinent part of information in making more relevant recommendations. Comprehensive experiments on three real-world datasets have shown that our dual-way learning strategy has significantly improved the MF performance in comparison with other state-of-the-art MF-based models according to various experimental evaluations. The source code of our methods is available at: https://github.com/jianlin-cheng/CATA.

READ FULL TEXT
research
07/27/2021

Deep Variational Models for Collaborative Filtering-based Recommender Systems

Deep learning provides accurate collaborative filtering models to improv...
research
08/30/2017

A Comparative Study of Matrix Factorization and Random Walk with Restart in Recommender Systems

Between matrix factorization or Random Walk with Restart (RWR), which me...
research
09/20/2023

Attentive VQ-VAE

We present a novel approach to enhance the capabilities of VQVAE models ...
research
10/24/2020

Attentive Autoencoders for Multifaceted Preference Learning in One-class Collaborative Filtering

Most existing One-Class Collaborative Filtering (OC-CF) algorithms estim...
research
12/25/2017

Collaborative Autoencoder for Recommender Systems

In recent years, deep neural networks have yielded state-of-the-art perf...
research
09/21/2021

Towards Explainable Scientific Venue Recommendations

Selecting the best scientific venue (i.e., conference/journal) for the s...
research
08/05/2017

Training Deep AutoEncoders for Collaborative Filtering

This paper proposes a novel model for the rating prediction task in reco...

Please sign up or login with your details

Forgot password? Click here to reset